EP3656304B1 - A method and a system for determining the maximum heart rate of a user in a freely performed physical exercise - Google Patents

A method and a system for determining the maximum heart rate of a user in a freely performed physical exercise Download PDF

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EP3656304B1
EP3656304B1 EP19211232.4A EP19211232A EP3656304B1 EP 3656304 B1 EP3656304 B1 EP 3656304B1 EP 19211232 A EP19211232 A EP 19211232A EP 3656304 B1 EP3656304 B1 EP 3656304B1
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heart rate
value
hrmax
intensity
external
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EP3656304A1 (en
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Sami Saalasti
Aki Pulkkinen
Tero Myllymäki
Mikko SEPPÄNEN
Kaisa HÄMÄLÄINEN
Maunu TOIVIAINEN
Tuukka Ruhanen
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Firstbeat Analytics Oy
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    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B5/00Measuring for diagnostic purposes; Identification of persons
    • A61B5/22Ergometry; Measuring muscular strength or the force of a muscular blow
    • A61B5/221Ergometry, e.g. by using bicycle type apparatus
    • A61B5/222Ergometry, e.g. by using bicycle type apparatus combined with detection or measurement of physiological parameters, e.g. heart rate
    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B5/00Measuring for diagnostic purposes; Identification of persons
    • A61B5/02Detecting, measuring or recording pulse, heart rate, blood pressure or blood flow; Combined pulse/heart-rate/blood pressure determination; Evaluating a cardiovascular condition not otherwise provided for, e.g. using combinations of techniques provided for in this group with electrocardiography or electroauscultation; Heart catheters for measuring blood pressure
    • A61B5/0205Simultaneously evaluating both cardiovascular conditions and different types of body conditions, e.g. heart and respiratory condition
    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B5/00Measuring for diagnostic purposes; Identification of persons
    • A61B5/48Other medical applications
    • A61B5/4866Evaluating metabolism
    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B5/00Measuring for diagnostic purposes; Identification of persons
    • A61B5/48Other medical applications
    • A61B5/4884Other medical applications inducing physiological or psychological stress, e.g. applications for stress testing
    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B5/00Measuring for diagnostic purposes; Identification of persons
    • A61B5/68Arrangements of detecting, measuring or recording means, e.g. sensors, in relation to patient
    • A61B5/6801Arrangements of detecting, measuring or recording means, e.g. sensors, in relation to patient specially adapted to be attached to or worn on the body surface
    • A61B5/6802Sensor mounted on worn items
    • A61B5/681Wristwatch-type devices
    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B5/00Measuring for diagnostic purposes; Identification of persons
    • A61B5/72Signal processing specially adapted for physiological signals or for diagnostic purposes
    • A61B5/7271Specific aspects of physiological measurement analysis
    • A61B5/7278Artificial waveform generation or derivation, e.g. synthesising signals from measured signals
    • GPHYSICS
    • G16INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR SPECIFIC APPLICATION FIELDS
    • G16HHEALTHCARE INFORMATICS, i.e. INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR THE HANDLING OR PROCESSING OF MEDICAL OR HEALTHCARE DATA
    • G16H20/00ICT specially adapted for therapies or health-improving plans, e.g. for handling prescriptions, for steering therapy or for monitoring patient compliance
    • G16H20/30ICT specially adapted for therapies or health-improving plans, e.g. for handling prescriptions, for steering therapy or for monitoring patient compliance relating to physical therapies or activities, e.g. physiotherapy, acupressure or exercising
    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B5/00Measuring for diagnostic purposes; Identification of persons
    • A61B5/02Detecting, measuring or recording pulse, heart rate, blood pressure or blood flow; Combined pulse/heart-rate/blood pressure determination; Evaluating a cardiovascular condition not otherwise provided for, e.g. using combinations of techniques provided for in this group with electrocardiography or electroauscultation; Heart catheters for measuring blood pressure
    • A61B5/024Detecting, measuring or recording pulse rate or heart rate
    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B5/00Measuring for diagnostic purposes; Identification of persons
    • A61B5/08Detecting, measuring or recording devices for evaluating the respiratory organs
    • A61B5/0816Measuring devices for examining respiratory frequency
    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B5/00Measuring for diagnostic purposes; Identification of persons
    • A61B5/72Signal processing specially adapted for physiological signals or for diagnostic purposes
    • A61B5/7235Details of waveform analysis
    • A61B5/7264Classification of physiological signals or data, e.g. using neural networks, statistical classifiers, expert systems or fuzzy systems

Definitions

  • This invention relates to a method and a system for determining the maximum heart rate, called HRmax of a user of in a freely performed physical exercise and using an apparatus with software and memory means.
  • Maximum heart rate represents the highest heart rate (HR) an individual can achieve through physical effort, typically represented by a number of beats per minute (bpm).
  • the maximum heart rate value can be used to make a variety of calculations, such as to determine a person's fitness level, energy expenditure, or to create appropriate training heart rate zones an athlete should exercise at to accomplish a specific exercise goal.
  • maximum heart rate is used in so many other physiological calculations, inaccuracy of this value will have significant effect on calculating anything else. For example, a 10-BPM error in maximum heart rate may increase the error of fitness level estimate by 50 % (i.e., MAPE increases from 5 % to 7.5 %).
  • US2011040193 discloses the determination of a user's fitness including an estimation of maximum heart rate.
  • Exercise intensity is estimated from a heart-rate-dependent EPOC (excess post-exercise oxygen consumption) calculation.
  • a theoretical oxygen consumption is further utilized as an external intensity.
  • the aim of this invention is to achieve a new method for determining maximum heart rate of a user and avoid above defects of prior art.
  • the method according to the invention is characterized by claim 1.
  • the system according to the invention is characterized by claim 10.
  • the intensity model takes, in addition of heart rate, account of respiration rate and kinetics-information. That kinetics information depicts change in EPOC, more generally the direction of cumulative physiological disturbance in homeostasis, whether it is at steady state, on-response (rising) or off-response (descending).
  • the claimed method is able to decrease the value of the determined maximal heart rate, which is necessary when aiming a fully realistic result among aging people and users in all levels.
  • process obtaining the value of HRmax comprises also calculation of its reliability inversely according to a magnitude of the minimum value.
  • the validation includes further steps of:
  • scanning is carried in two ranges locating upwards and downwards from a chosen starting value and the obtained value with a higher reliability from two obtained values from said ranges is chosen as a final value of HRmax.
  • the method can be implemented in versatile devices, which have resources for measuring internal intensity and external workload, and run software to execute processes depicted in the exemplary flowcharts of Figures 1 and 2 .
  • a schematic hardware assembly is depicted below in exemplary Figure 6 .
  • Initial background and personal data may be stored.
  • the fitness level for example VO2max or METmax
  • the maximum heart rate (HRmax), and the like, of the user may be stored.
  • Personal data may be entered or determined beforehand.
  • the shown calculation process of maximal heart rate may be a part of bigger software that monitors and analyzes physiology of a user.
  • External (10) and internal (12) workloads are measured continuously.
  • the external workload may be measured in many ways, for example (but not limited to) speed, altitude, power, etc.
  • the internal workload is monitored usually by heart rate, which may be performed by various devices, such as (but not limited to) a heart rate belt, PPG- or ECG-device.
  • ETE - library software External and internal workloads are monitored (5 sec interval) by a host process, here ETE - library software, step 14. It will need here some background parameters, like age, sex, a possible initial value of HRmax, here HRmax bg from step 15.
  • the ETE software calculates continuously several variables for HRmax estimation software. These variables are updated in every 5 seconds (more generally in 1- 15 seconds) and stored temporarily (runtime), step 16.
  • the ETE library updates the (majority of) its global variables once every five seconds (more generally 1 -15 seconds depending on a particular embodiment). Before estimating the maximal heart rate, the following variables are updated by ETE:
  • speed is in units m/s. It is the raw input speed (without inclination correction).
  • the weight of the user in kilograms is given by the variable weight.
  • VO2 MIN( VO2_running , VO2_walking ), when the type of exercise is not known.
  • maxMET the weighted maximal MET estimate given by the ETE library.
  • Heart rate beat-to beat interval and/or heart rate level
  • external work speed and optionally altitude, or pedaling/rowing power
  • maxMET the maximal MET value given as background parameter is assigned to this variable. Otherwise the value of zero is used to indicate a missing value.
  • respRate respiration rate (in Hz) estimated from the RRI sequence or heart rate data
  • fxEpocHr heart rate based EPOC estimate. This variable is used in the neural network that calculates the internal intensity (Int-int). The value of kinetics (selection of A, B, C of figure 5 ) are defined by this variable.
  • anMultiplier multiplier (greater than or equal to one) used to increase intensity based on anaerobic load.
  • floatingHRmax_ave weighted average of maximal heart rate values given by the HRmax estimation algorithm ( Figure 2 ) during the current training session.
  • the weights used in the calculation of the weighted average are the reliability weights ( w_c, between zero and one), as described in Figure 2 .
  • This variable is updated after the HRmax estimation algorithm in step 19. This variable is either initialized to zero in the beginning of the current exercise or the latest available value from the previous exercise session as the initial value.
  • floatingHRmax_sum_w sum of the reliability weights ( w_c ) given by the HRmax estimation algorithm during the current training session. This variable is updated after the HRmax estimation algorithm in step 19. This variable is either initialized to zero in the beginning of the current exercise or the latest available value from the previous exercise session as the initial value.
  • newMaxHR highest measured heart rate (i.e., largest value observed for the variable HR ) encountered during the current training session
  • the maximal heart rate estimation algorithm (step 18) is run only if fitness level estimate (i.e., non-zero value for the variable maxMET ) is available.
  • the maximal heart rate estimation algorithm (step 18) minimizes the absolute difference between external and internal intensities as a function of maximal heart rate. The details of the algorithm with references to Figure 2 are given later in the text.
  • a weighted average of HRmax solutions and the sum of reliability weights are updated with the following equations (step 19):
  • HRmax weighted average: floatingHRmax _ ave floatingHRmax _ ave + w _ c * HRmax _ c / floatingHRmax _ sum _ w / 1 + w _ c / floatingHRmax _ sum _ w
  • Sum of reliability weights: floatingHRmax _ sum _ w floatingMaxHR _ sum _ w + w _ c
  • the obtained maximum heart rate estimate (HRmax_est) is validated and stored or rejected it based on a chosen criterion (step 20).
  • the weighted average of optimal solutions floatingHRmax_ave provides an estimate for the maximal heart rate for the user.
  • the estimate is validated (step 20) via comparing it with the values of the variables HRmax_bg, HRmax_age and newMaxHR. Then the execution returns to handle next 5 second sequence (to step 14) . Also, the latest HRmax estimate is given as output every 5 seconds.
  • the final maximal heart rate solution is calculated as a function of the variables floatingHRmax_ave, floatingHRmax_sum_w, HRmax_bg , HRmax_age and newMaxHR. The final solution and possibly a reliability calculated for it in the validation phase are given as output in step 23.
  • the maximal heart rate estimation algorithm (step 18 and Figure 2 ) is entered only if a non-zero value for maxMET is currently available.
  • Any model for the internal intensity should have as parameters at least relative heart rate ( HR/HR_i ) and one of said two parameters ( respRate, kinetics ) - preferably both parameters.
  • HR/HR_i relative heart rate
  • An embodiment which has heart rate (HR/HR_i) as a sole parameter would also be possible but may suffer from inaccuracy.
  • the objective function is thus the absolute value of the difference between the external and internal intensities.
  • the function can also be, for example, the second power of the said difference, or any other function which monotonically increases in value as the absolute value of the difference between external and internal intensities increase.
  • the estimation algorithm ( Figure 2 ) uses the latest available values of the global variables (13). References are also made to Figures 3 - 5 .
  • the host software calls this child process (step 1801) and it defines a scanning range (step 1803) and sets a step (usually 1 bpm).
  • heart rate HR_i runs stepwise across the range ( HR lower - HR upper ) from a set starting point. In each point the value of the objective function is calculated (step 1851) and it is compared to previous values (step 1852).
  • the starting point is somewhere near the background max heart rate ( HRmax_bg ). If there are two ranges ( Fig. 4 ) and two scanning processes, both start preferably from the background max heart rate ( HRmax_bg ) and the lowest minimum value of two minimums defines the true minimum of objective function. Finally, the maximal heart rate value which leads to the lowest value for objective function is selected as HRmax candidate (variable HRmax_c in Figure 2 ).
  • the objective function f(HR_i) is calculated in each value of HR_i (step 1851).
  • the other parameters are treated as constants during this 5 second process and they are picked up from list of the global variables (13).
  • the optimization (scanning) process can be implemented by any numerical optimization method suitable for the task (e.g., linear scan, binary search, line search, etc.).
  • step 1852 When the optimization of step 1852 is carried out using a linear scan using a running variable HR_i , the scanning process is stopped once all values in the range ( HR lower - HR upper ) has been scanned at the specified step size.
  • the optimal solution ( HRmax_c ) is the value of the decision variable which produces lowest value for the objective function in this range.
  • the linear scan may be stopped early as soon as the first minimum has been found.
  • Other search methods such as binary search and line search become applicable when such assumption on unimodality of the objective function may be assumed.
  • the maximal heart rate HR_max_c is the only decision variable in the minimization process. It should be noted that the external_intensity is dependent on maximal heart rate, as well: the estimation of the fitness level ( maxMET ) requires an estimate for maximal heart rate. However, based on empirical testing, the presented method converges towards correct solution even if value of the variable external_intensity is calculated using the maximal heart rate value given by the background variable HRmax_bg which remains constant throughout a single measurement. The presented method could be extended to the situation where the external_intensity depends on the running variable HR_i, i.e. on the decision variable HR_i, as well. However, it would increase the space and time complexity of the algorithm.
  • the reliability of the optimal solution ( HRmax_c ) is quantified with a non-negative reliability weight which correlates negatively with the value of the objective function at the optimal solution.
  • the value of the objective function at the optimal solution is denoted with f().
  • Possible anaerobic part will be checked by steps 1809, 1810 and 1811 and it will decrease the weight ( w_c ) of the obtained optimal solution (maximum heart rate value HRmax_c ). If significant anerobic contribution is present during the current exercise, the anMultiplier variable has a value larger than one. When anaerobic contribution is not present, anMultiplier remains at 1.0.
  • FIG. 5A- 5C There are three separate situations ( Fig. 5A- 5C ), each of which defines the function used in the estimation algorithm during three typical exercise phases: A) steady state, B) one example of on-response and C) one example of off-response. These states A, B and C are referred to as "kinetics" and they are defined by EPOC-calculation or any other method determining a change in homeostasis. Figures 5B and 5C show just one example of both these states as the rate of change in fatigue accumulation or recovery and may vary, whereas steady-state (5A) always means a state where fatigue level remains completely unchanged.
  • a wrist top device with a heart-rate transmitter a mobile device such as a phone, tablet or the like, or other system having CPU, memory and software therein may be used.
  • in the implementation may include an assembly built around a central processing unit (CPU) 132.
  • a bus 136 may transmit data between the central unit 132 and the other units.
  • the input unit131, ROM memory 1311, RAM memory 1312, keypad 118, PC connection 137, and output unit 134 may be connected to the bus.
  • RAM memory has an allocated area 122 for HRmax calculation, namely local and global variables therein.
  • the system may include a data logger which can be connected to cloud service, or other storage as would be understood by a person of ordinary skill in the art.
  • the data logger may measure, for example, physiological response and/or external workload.
  • a heart rate sensor 142 and any sensor 140 registering external workload may be connected to the input unit 131, which may handle the sensor's data traffic to the bus 136.
  • the PC may be connected to a PC connection 137.
  • the output device for example a display 145 or the like, may be connected to output unit 134.
  • voice feedback may be created with the aid of, for example, a voice synthesizer and a loudspeaker 135, instead of, or in addition to the feedback on the display.
  • the sensor 140 which may measure external workload may include any number of sensors, which may be used together to define the external work done by the user.
  • the system presented in Figure 6 may have the following parts for determining the maximum heart rate of a user.
  • the data processing unit (132) may include dedicated software configured to execute the embodiments described in the present disclosure.
  • default values of the optional parameters may be stored in a ROM memory, in an EEPROM (Electrically Erasable Programmable Read-Only Memory).

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Description

    FIELD
  • This invention relates to a method and a system for determining the maximum heart rate, called HRmax of a user of in a freely performed physical exercise and using an apparatus with software and memory means.
  • BACKGROUND
  • Prior art present plurality of methods based on regression analysis for determining maximum heart rate of user Maximum heart rate represents the highest heart rate (HR) an individual can achieve through physical effort, typically represented by a number of beats per minute (bpm). The maximum heart rate value can be used to make a variety of calculations, such as to determine a person's fitness level, energy expenditure, or to create appropriate training heart rate zones an athlete should exercise at to accomplish a specific exercise goal.
  • The most direct way to determine maximum heart rate is for a person to perform maximal exercise and measure their highest heart rate. In many cases, this is not an appropriate method as many people do not wish to perform such a strenuous test. For many others, such as seniors or those with medical conditions, performing such high-intensity tests may also be unsafe.
  • As an alternative, it is possible to estimate a person's maximum heart rate. There are many methods that currently exist to provide an estimation of maximum heart rate. Simple calculations may use a person's age, gender, activity level, or weight. Most of these calculations are unreliable and may produce large errors. For example, age is known to correlate negatively with maximum heart rate, so age-based models of estimating maximum heart rate are common, the most well-known one being 220 - [age]. However, these formulas have problems with accuracy and large outliers can occur. This significantly reduces these formulas' usefulness.
  • Many methods are only able to update the maximal heart rate value upwards, meaning that once a maximal heart value is found, it is only updated if a higher one is detected. However, it is a well-known fact that maximal heart rate decreases with age. Thus, if the same wearable device is used by the same user over many years, it should be possible to update the maximal heart rate value downwards.
  • Because maximum heart rate is used in so many other physiological calculations, inaccuracy of this value will have significant effect on calculating anything else. For example, a 10-BPM error in maximum heart rate may increase the error of fitness level estimate by 50 % (i.e., MAPE increases from 5 % to 7.5 %).
  • Thus, there is a need for a method of accurately estimating maximum heart rate that does not require a person to perform a maximum effort exercise. Therefore, there remains a continuous need for a more accurate and universal method to estimating maximum heart rate.
  • There are some known prior art known by the applicant.
  • WO2017/117183 A1 - Methods, Systems, and Non-transitory Computer Readable Media for Estimating Maximum Heart Rate and Maximal Oxygen Uptake Form [sic] Submaximal Exercise Intensities
  • US20160058367 - Context-aware Heart Rate Estimation
  • US20160183886 - Biological information predicting apparatus and biological information predicting method
  • Karavirta, L., Tulppo, M. P., Nyman, K., Laaksonen, D. E., Pullinen, T., Laukkanen, R. T., ... & Hakkinen, K. (2008). Estimation of maximal heart rate using the relationship between heart rate variability and exercise intensity in 40-67 years old men. European journal of applied physiology, 103(1), 25-32.
  • Furthermore, US2011040193 discloses the determination of a user's fitness including an estimation of maximum heart rate. Exercise intensity is estimated from a heart-rate-dependent EPOC (excess post-exercise oxygen consumption) calculation. A theoretical oxygen consumption is further utilized as an external intensity.
  • SUMMARY
  • The aim of this invention is to achieve a new method for determining maximum heart rate of a user and avoid above defects of prior art.
  • The method according to the invention is characterized by claim 1. The system according to the invention is characterized by claim 10.
  • In the first embodiment the intensity model takes, in addition of heart rate, account of respiration rate and kinetics-information. That kinetics information depicts change in EPOC, more generally the direction of cumulative physiological disturbance in homeostasis, whether it is at steady state, on-response (rising) or off-response (descending).
  • Generally speaking it is disclosed a method, which minimizes the absolute value of the difference between simulated (external) intensity and physiological (internal) intensity as a function of maximal heart rate.
  • The claimed method is able to decrease the value of the determined maximal heart rate, which is necessary when aiming a fully realistic result among aging people and users in all levels.
  • In a useful embodiment process obtaining the value of HRmax comprises also calculation of its reliability inversely according to a magnitude of the minimum value. In another embodiment the validation includes further steps of:
    • calculating a weighted average floating value of all obtained values of HRmax and storing it, and
    • comparing each calculated average floating value with the initial value of HRmax and an age based value of HRmax using a predetermined criterion to choose the final value of HRmax.
  • In another embodiment scanning is carried in two ranges locating upwards and downwards from a chosen starting value and the obtained value with a higher reliability from two obtained values from said ranges is chosen as a final value of HRmax.
  • A BRIEF DESCRIPTION OF THE FIGURES
  • Advantages of embodiments of the present disclosure will be apparent from the following detailed description of the exemplary embodiments. The following detailed description should be considered in conjunction with the accompanying figures in which:
    • Figure 1 presents an exemplary flowchart illustrating the main flow of execution of calculation of maximal heart rate (HRmax).
    • Figure 2 presents the flowchart of the Estimation algorithm
    • Figure 3 and 4 present exemplary diagrams depicting scanning the objective function in one or two ranges.
    • Figures 5a, 5b and 5c present exemplary charts for internal-intensity function "int-int" - used in the estimation algorithm during three typical exercise phases: A) steady state, B) on-response and C) off-response.
    • Figure 6 presents an exemplary block diagram of a system with additional interfaces.
    DETAILED DESCRIPTION
  • The method can be implemented in versatile devices, which have resources for measuring internal intensity and external workload, and run software to execute processes depicted in the exemplary flowcharts of Figures 1 and 2. A schematic hardware assembly is depicted below in exemplary Figure 6.
  • Initial background and personal data may be stored. For example, the fitness level (for example VO2max or METmax) and the maximum heart rate (HRmax), and the like, of the user may be stored. Personal data may be entered or determined beforehand.
  • DESCRIPTION OF THE PROGRAM (FIGURE 1)
  • In Figure 1 the shown calculation process of maximal heart rate (HRmax) may be a part of bigger software that monitors and analyzes physiology of a user. External (10) and internal (12) workloads are measured continuously. The external workload may be measured in many ways, for example (but not limited to) speed, altitude, power, etc. The internal workload is monitored usually by heart rate, which may be performed by various devices, such as (but not limited to) a heart rate belt, PPG- or ECG-device.
  • External and internal workloads are monitored (5 sec interval) by a host process, here ETE - library software, step 14. It will need here some background parameters, like age, sex, a possible initial value of HRmax, here HRmaxbg from step 15. The ETE software calculates continuously several variables for HRmax estimation software. These variables are updated in every 5 seconds (more generally in 1- 15 seconds) and stored temporarily (runtime), step 16.
  • LOCAL VARIABLES IN THIS FUNCTION:
  • The core variables metSPEED, maxMET, HR, respRate, kinetics, anMultiplier are defined below.
  • Several other parameters are used:
    • w_c: reliability weight of the optimal solution (fixed point)
    • i: iteration index in while loop (integer)
    • f_old: previous value of the objective function (fixed point)
    • f_i: current value of the objective function (fixed point)
    • Int. Intensity_i: intensity (%-maxMET) at current solution (integer)
  • Output arguments in this function:
    • HRmax_c: optimal solution (integer)
  • The ETE library updates the (majority of) its global variables once every five seconds (more generally 1 -15 seconds depending on a particular embodiment). Before estimating the maximal heart rate, the following variables are updated by ETE:
    • HR: current heart rate level (may be updated in principle after each heart beat)
    • speed: current walking/running speed of the user
    • altitude: current altitude as obtained, e.g., via GPS or a barometer
    • power: pedaling power (only available in the case of cycling or rowing)
    • inclination_angle: current angle of inclination (in radians) obtained directly or through sequential altitude and speed measurements
    • metSpeed: MET estimate calculated using external workload, calculated as VO2/3.5 (where 3.5 is a constant), where VO2 is one of following (all in units: ml/min/kg):
      • VO 2 _ running = 12.0 * speed + 3.5
        Figure imgb0001
      • VO 2 _ walking = 4.3804 * speed 2 0.2996 * speed + 7.0928
        Figure imgb0002
      • VO 2 _ power = 12.24 * power + 350.0 / weight
        Figure imgb0003
  • Here, speed is in units m/s. It is the raw input speed (without inclination correction). The weight of the user in kilograms is given by the variable weight.
  • In the case of running and walking, the inclination angle may be taken into account as follows:
    If inclination angle is positive, as when going uphill: VO 2 _ running = VO 2 _ running + speed * inclination _ angle * 54.0
    Figure imgb0004
    VO 2 _ walking = VO 2 _ walking + speed * inclination _ angle * 108.0
    Figure imgb0005
  • There are similar equations available when the inclination angle is negative, as when going downhill.
  • In the case of running and walking, the software may select the minimum of these two values:
    VO2 = MIN(VO2_running, VO2_walking), when the type of exercise is not known.
  • In the case of cycling, only VO2_power is available, and this value is thus assigned to the variable VO2.
  • maxMET: the weighted maximal MET estimate given by the ETE library. Heart rate (beat-to beat interval and/or heart rate level) and external work (speed and optionally altitude, or pedaling/rowing power) are required for estimation of maxMET. If there has not been enough reliable data available during the current measurement (e.g., due to missing speed data or low-quality heart rate data), the maximal MET value given as background parameter is assigned to this variable. Otherwise the value of zero is used to indicate a missing value.
  • respRate: respiration rate (in Hz) estimated from the RRI sequence or heart rate data
  • fxEpocHr: heart rate based EPOC estimate. This variable is used in the neural network that calculates the internal intensity (Int-int). The value of kinetics (selection of A, B, C of figure 5) are defined by this variable.
  • anMultiplier: multiplier (greater than or equal to one) used to increase intensity based on anaerobic load.
  • floatingHRmax_ave: weighted average of maximal heart rate values given by the HRmax estimation algorithm (Figure 2) during the current training session. The weights used in the calculation of the weighted average are the reliability weights (w_c, between zero and one), as described in Figure 2. This variable is updated after the HRmax estimation algorithm in step 19. This variable is either initialized to zero in the beginning of the current exercise or the latest available value from the previous exercise session as the initial value.
  • floatingHRmax_sum_w: sum of the reliability weights (w_c) given by the HRmax estimation algorithm during the current training session. This variable is updated after the HRmax estimation algorithm in step 19. This variable is either initialized to zero in the beginning of the current exercise or the latest available value from the previous exercise session as the initial value.
  • newMaxHR: highest measured heart rate (i.e., largest value observed for the variable HR) encountered during the current training session
  • The following internal (global) variables are calculated and stored in the initialization phase of the ETE library (in the beginning of the current training session) and they remain constant throughout the current training session (step 15):
    • age: age of the user in years
    • weight: weight of the user in kilograms
    • HRmax_age: age-based estimate for maximal heart rate: 210 - 0.65*age
    • HRmax_bg: maximal heart rate given as background parameter; if this was not given by the user, the default value HRmax_age is assigned to it
  • The maximal heart rate estimation algorithm (step 18) is run only if fitness level estimate (i.e., non-zero value for the variable maxMET) is available. The maximal heart rate estimation algorithm (step 18) minimizes the absolute difference between external and internal intensities as a function of maximal heart rate. The details of the algorithm with references to Figure 2 are given later in the text.
  • After the estimation algorithm has finished with the optimal solution HRmax_c and its reliability weight w_c as outputs, a weighted average of HRmax solutions and the sum of reliability weights are updated with the following equations (step 19):
    HRmax weighted average: floatingHRmax _ ave = floatingHRmax _ ave + w _ c * HRmax _ c / floatingHRmax _ sum _ w / 1 + w _ c / floatingHRmax _ sum _ w
    Figure imgb0006
    Sum of reliability weights: floatingHRmax _ sum _ w = floatingMaxHR _ sum _ w + w _ c
    Figure imgb0007
  • With these floating weight values the obtained maximum heart rate estimate (HRmax_est) is validated and stored or rejected it based on a chosen criterion (step 20).
  • These two variables are updated after each call to the HRmax estimation routine (step 18). Optimal solutions (HRmax_c) with higher reliability weights (w_c) have larger effect on the value of the weighted average (floatingHRmax_ave).
  • The weighted average of optimal solutions floatingHRmax_ave provides an estimate for the maximal heart rate for the user. However, in the case of an erroneous input speed, altitude, power or heart rate data, the estimate may be unreliable. Hence, the estimate is validated (step 20) via comparing it with the values of the variables HRmax_bg, HRmax_age and newMaxHR. Then the execution returns to handle next 5 second sequence (to step 14) . Also, the latest HRmax estimate is given as output every 5 seconds. Based on predetermined validation rules, the final maximal heart rate solution is calculated as a function of the variables floatingHRmax_ave, floatingHRmax_sum_w, HRmax_bg, HRmax_age and newMaxHR. The final solution and possibly a reliability calculated for it in the validation phase are given as output in step 23.
  • DESCRIPTION OF THE HRMAX ESTIMATION ALGORITHM (FIGURE 2)
  • The maximal heart rate estimation algorithm (step 18 and Figure 2) is entered only if a non-zero value for maxMET is currently available.
  • The maximal heart rate estimation method tries to minimize the objective function f = f (HR_i) as a function of maximal heart rate, i.e., the decision variable HR_i (steps 1851 and 1852), where f(HR_i) = |external_intensity - internal_intensity(HR_i, HR, respRate, kinetics)|
  • The values of the variables external_intensity, HR, respRate and kinetics remain constant during the minimization (scanning) phase in each 5-second calculation round. Thus, only the second term internal_intensity() varies as the decision variable HR_i is changed during the optimization (scanning) process.
  • The external intensity is defined as the ratio of metSpeed and maxMET: external _ intensity = metSpeed / ma x MET
    Figure imgb0008
    metSpeed and maxMET are the latest available values for the variables. They remain fixed during the scanning procedure of one calculation round.
  • Estimate for the internal intensity (a value in the range [0,1]) is provided by the HR based neural network model within the ETE library by the function internal_intensity() (abbreviation: Int_int) which is a nonlinear function of the following variables:
    • relative heart rate: ratio between current heart rate (HR) and current candidate for maximal heart rate (HR_i): HR/HR_i
    • respRate: respiration rate (in Hz) estimated from the RRI sequence or heart rate data
    • kinetics: difference between the current and previous (5 s earlier) HR-based EPOC value: fxEpocHr(current) - fxEpocHr(previous)
  • Any model for the internal intensity should have as parameters at least relative heart rate (HR/HR_i) and one of said two parameters (respRate, kinetics) - preferably both parameters. An embodiment which has heart rate (HR/HR_i) as a sole parameter would also be possible but may suffer from inaccuracy.
  • Here, the objective function is thus the absolute value of the difference between the external and internal intensities. It should be noted that the function can also be, for example, the second power of the said difference, or any other function which monotonically increases in value as the absolute value of the difference between external and internal intensities increase.
  • The estimation algorithm (Figure 2) uses the latest available values of the global variables (13). References are also made to Figures 3 - 5.
  • The host software calls this child process (step 1801) and it defines a scanning range (step 1803) and sets a step (usually 1 bpm). In the scanning process (1805) heart rate HR_i runs stepwise across the range (HRlower - HRupper ) from a set starting point. In each point the value of the objective function is calculated (step 1851) and it is compared to previous values (step 1852). Thus, the n th HR_i gets value from following equation: HR_n = HRlower + n×STEP.
  • If there is only one range (Fig. 3), the starting point is somewhere near the background max heart rate (HRmax_bg). If there are two ranges (Fig. 4) and two scanning processes, both start preferably from the background max heart rate (HRmax_bg) and the lowest minimum value of two minimums defines the true minimum of objective function. Finally, the maximal heart rate value which leads to the lowest value for objective function is selected as HRmax candidate (variable HRmax_c in Figure 2).
  • During scanning, the objective function f(HR_i) is calculated in each value of HR_i (step 1851). The other parameters are treated as constants during this 5 second process and they are picked up from list of the global variables (13). The optimization (scanning) process can be implemented by any numerical optimization method suitable for the task (e.g., linear scan, binary search, line search, etc.).
  • When the optimization of step 1852 is carried out using a linear scan using a running variable HR_i, the scanning process is stopped once all values in the range (HRlower - HRupper ) has been scanned at the specified step size. The optimal solution (HRmax_c) is the value of the decision variable which produces lowest value for the objective function in this range. Alternatively, if the objective function may be assumed to contain a single minimum in the scanned range, the linear scan may be stopped early as soon as the first minimum has been found. Other search methods such as binary search and line search become applicable when such assumption on unimodality of the objective function may be assumed.
  • The maximal heart rate HR_max_c is the only decision variable in the minimization process. It should be noted that the external_intensity is dependent on maximal heart rate, as well: the estimation of the fitness level (maxMET) requires an estimate for maximal heart rate. However, based on empirical testing, the presented method converges towards correct solution even if value of the variable external_intensity is calculated using the maximal heart rate value given by the background variable HRmax_bg which remains constant throughout a single measurement. The presented method could be extended to the situation where the external_intensity depends on the running variable HR_i, i.e. on the decision variable HR_i, as well. However, it would increase the space and time complexity of the algorithm.
  • The reliability of the optimal solution (HRmax_c) is quantified with a non-negative reliability weight which correlates negatively with the value of the objective function at the optimal solution. In one example, a reliability weight is calculated with an empiric equation w _ c = 1 , if 0.2 5.3452 × f > 1
    Figure imgb0009
    w _ c = 0 , if 0.2 5.3452 × f < 0
    Figure imgb0010
    w _ c = 0.2 5.3452 × f otherwise .
    Figure imgb0011
    Here, the value of the objective function at the optimal solution is denoted with f().
  • Possible anaerobic part will be checked by steps 1809, 1810 and 1811 and it will decrease the weight (w_c) of the obtained optimal solution (maximum heart rate value HRmax_c). If significant anerobic contribution is present during the current exercise, the anMultiplier variable has a value larger than one. When anaerobic contribution is not present, anMultiplier remains at 1.0.
  • If anMultiplier exceeds the value of 1.0, the value of the reliability weight w_c is decreased , e.g., with the following empirical equation: w _ c = w _ c / 2 × anMultiplier step 1810 .
    Figure imgb0012
    Finally, the optimal solution (HRmax_c) and its reliability weight (w_c) have been calculated (step 1811) and they are given as outputs in step 1812.
  • DESCRIPTION OF THE INTERNAL INTENSITY FUNCTION (FIGURE 5)
  • There are three separate situations (Fig. 5A- 5C), each of which defines the function used in the estimation algorithm during three typical exercise phases: A) steady state, B) one example of on-response and C) one example of off-response. These states A, B and C are referred to as "kinetics" and they are defined by EPOC-calculation or any other method determining a change in homeostasis. Figures 5B and 5C show just one example of both these states as the rate of change in fatigue accumulation or recovery and may vary, whereas steady-state (5A) always means a state where fatigue level remains completely unchanged.
  • DESCRIPTION OF EXEMPLARY EMBODIMENTS (FIGURE 6)
  • The system and method according to the exemplary embodiments can be applied in many kinds of devices as would be understood by a person of ordinary skill in the art. For example, a wrist top device with a heart-rate transmitter, a mobile device such as a phone, tablet or the like, or other system having CPU, memory and software therein may be used.
  • According to exemplary Figure 6, in the implementation may include an assembly built around a central processing unit (CPU) 132. A bus 136 may transmit data between the central unit 132 and the other units. The input unit131, ROM memory 1311, RAM memory 1312, keypad 118, PC connection 137, and output unit 134 may be connected to the bus. RAM memory has an allocated area 122 for HRmax calculation, namely local and global variables therein.
  • The system may include a data logger which can be connected to cloud service, or other storage as would be understood by a person of ordinary skill in the art. The data logger may measure, for example, physiological response and/or external workload.
  • A heart rate sensor 142 and any sensor 140 registering external workload may be connected to the input unit 131, which may handle the sensor's data traffic to the bus 136. In some exemplary embodiments, the PC may be connected to a PC connection 137. The output device, for example a display 145 or the like, may be connected to output unit 134. In some embodiments, voice feedback may be created with the aid of, for example, a voice synthesizer and a loudspeaker 135, instead of, or in addition to the feedback on the display. The sensor 140 which may measure external workload may include any number of sensors, which may be used together to define the external work done by the user.
  • More specifically the system presented in Figure 6 may have the following parts for determining the maximum heart rate of a user.
    • a heart rate sensor (142) configured to measure the heartbeat of the person, the heart rate signal being representative of the heartbeat of the user;
    • at least one sensor (140) to measure an external workload during an exercise, and
    • a data processing unit (132) operably coupled to the said sensors (142, 140), a memory (1311, 1312) operably coupled to the data processing unit (132),
    • the memory may be configured to save background information of a user, for example, background data including an earlier fitness level, as well as HRmax and the like.
  • The data processing unit (132) may include dedicated software configured to execute the embodiments described in the present disclosure.
  • As described above in the exemplary embodiments, default values of the optional parameters may be stored in a ROM memory, in an EEPROM (Electrically Erasable Programmable Read-Only Memory).

Claims (10)

  1. A method for determining the maximum heart rate, called HRmax, of a user in a freely performed physical exercise and using an apparatus with software and memory means, comprising:
    providing and storing an initial value for HRmax,
    providing and storing an intensity model of actual internal intensity (Int-int) utilizing at least relative heart rate and one of following: respiration rate, disturbance in homeostasis (Kinetics), the method comprising steps of:
    continuously measuring heart rate (HR) (step 12), by a heart rate sensor (142) and recording a measured heart rate value at least temporarily,
    continuously measuring by at least one sensor (140) an external workload (10), wherein a measured workload value is recorded at least temporarily and associated with the measured heart rate value
    continuously calculating values (step 14) for several variables and updating them in memory using said software and memory means (1311, 1312), said variables including
    a variable depicting current internal intensity using recorded values of heart rate (HR), and at least the following according to said intensity model:
    a variable depicting current respiration rate called as respRate using recorded values of heart rate (HR), and
    a variable (kinetics) depicting at least direction of cumulative physiological disturbance in homeostasis using the recorded values of heart rate and external workload, and
    a variable depicting maximum performance (maxMET),
    a variable depicting external intensity based on the recorded values of external workload (metSPEED) and maximum performance,
    characterized by the method including further steps of:
    selecting a range for heart rate (HR_i) (step 1803) nearby the last recorded maximum heart rate (HRmax) and storing values HRlower, HRupper for upper and lower ends of that range,
    seeking a minimum value of an objective function (f()) (step 18) depicting the difference between external intensity and internal intensity by scanning the objective function (f()) across the range between the values HRlower HRupper using said [internal] intensity model having heart rate HR_i as a running variable therein,
    and obtaining and storing a maximum heart rate estimate (HRmax_est) at HR_i giving said minimum value,
    validating and storing the obtained value of maximum heart rate estimate (HRmax_est) or rejecting it based on a chosen criterion (step 20) .
  2. A method according to claim 1, characterized in that said objective function f() is calculated using an equation: f HR _ i = external _ intensity internal _ intensity HR _ i , HR , respRate , kinetics ,
    Figure imgb0013
    where
    external_intensity = metSPEED/maxMET, and
    internal intensity is obtained from an intensity model "Int-int" having a running variable HR_i and values for heart rate HR, respiration rate respRate and kinetics as constants during scanning.
  3. A method according to claim 1 or 2, characterized in that said obtaining the value of HRmax comprises also calculation of its reliability inversely according to a magnitude of the minimum value of the objective function.
  4. A method according to claim 3, characterized in that said validation includes further steps of:
    calculating a weighted average floating value of all obtained values of HRmax and storing it (step 19), and
    comparing the calculated average floating value with the initial value of HRmax and an age-based value of HRmax and predetermined criterion to choose the final value of HRmax.
  5. A method according to any of claims 1 - 4, characterized in that said scanning is carried in two ranges locating upwards and downwards from a chosen starting value and the obtained value with a higher reliability from two obtained values from said ranges is chosen as a final value of HRmax.
  6. A method according to any of claims 1 - 5, characterized in that local variables are updated every 1- 15 seconds, or in 5 seconds and stored temporarily.
  7. A method according to any of claims 1 - 6, characterized in that the intensity model "int-int" has three input states. A - recovery, B - steady-state and C-accumulating fatigue, one of then selected by a kinetics method determining a change in homeostasis and each having influence on internal intensity value.
  8. A method according to claim 7, characterized in that the kinetics method is defined by EPOC -calculation.
  9. A method according to any of claims 1 - 8, characterized in that the chosen criterion to validate the obtained value of maximum heart rate estimate (HRmax_est) is a specific criterion using an age based and background HRmax values.
  10. System for determining the maximum heart rate, called HRmax of a user of in a freely performed physical exercise comprising an apparatus with software and memory means (1311, 1312), the apparatus comprising:
    means for providing and storing in memory an initial value for HRmax
    memory for storing an intensity model (Int-int) of actual internal intensity relation with at least heart rate, respiration rate and disturbance in homeostasis (kinetics),
    a heart rate sensor (142) configured for continuously measuring (10) heart rate (HR) and means for recording a measured heart rate value at least temporarily,
    at least one second sensor (140) configured for continuously measuring an external workload,
    and means configured for recording a respective value at least temporarily and associated the measured heart rate value means configured for continuously calculating values (132) for several variables and
    updating them in memory using said software and memory means, said variables including
    a variable depicting current internal intensity called as HRmax using recorded values of heart rate (HR),
    a variable depicting current respiration rate called as respRate using recorded values of heart rate (HR),
    a variable (kinetics) depicting at least direction of cumulative physiological disturbance in homeostasis using the recorded values of heart rate and external workload,
    a variable depicting maximum performance maxMET,
    a variable depicting external intensity using measured external workload
    external intensity using measured external workload and maximum performance (maxMET),
    characterized by
    the apparatus having further means configured to execute steps of:
    selecting (1803) a range for heart rate (HR_i) nearby the last recorded actual maximum heart rate (HRmax)
    seeking a minimum value of an objective function f() defined (1851) by an equation: f HR _ i = external _ intensity internal _ intensity HR _ i , HR , respRate , kinetics ,
    Figure imgb0014
    where
    external_intensity = metSPEED/maxMET, internal intensity is obtained from an intensity model "Int-int" having running variable HR_i and values for heart rate HR respiration rate respRate and kinetics as constants during scanning, obtaining and storing a maximum heart rate estimate (HRmax_est) at HR(i) giving said minimum value,
    and means configured for validating and storing the obtained value of HRmax or rejecting it based on a chosen criterion.
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US10820810B2 (en) 2018-11-26 2020-11-03 Firstbeat Analytics, Oy Method and a system for determining the maximum heart rate of a user of in a freely performed physical exercise
GB2606140A (en) 2021-04-21 2022-11-02 Prevayl Innovations Ltd Method and system for correcting heartrate values derived from a heart rate signal
GB2611326A (en) 2021-09-30 2023-04-05 Prevayl Innovations Ltd Method and system for facilitating communication between an electronics module and an audio output device
WO2023052751A1 (en) 2021-09-30 2023-04-06 Prevayl Innovations Limited Method and system for facilitating communication between an electronics module and an audio output device
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Family Cites Families (21)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
WO2005067790A1 (en) * 2004-01-16 2005-07-28 Compumedics Ltd Method and apparatus for ecg-derived sleep disordered breathing monitoring, detection and classification
FI6796U1 (en) * 2004-06-16 2005-09-26 Firstbeat Technologies Oy A system for monitoring and predicting physiological conditions under physical exertion
FI20085402A0 (en) 2008-05-02 2008-05-02 Firstbeat Technologies Oy fitness test
EP2358266A4 (en) * 2008-11-20 2012-10-03 Bodymedia Inc Method and apparatus for determining critical care parameters
US11253159B2 (en) * 2010-01-31 2022-02-22 Vladimir Shusterman Tracking cardiac forces and arterial blood pressure using accelerometers
FI20115351A0 (en) * 2011-04-12 2011-04-12 Firstbeat Technologies Oy SYSTEM FOR MONITORING THE PHYSICAL STATUS OF THE USER
US8961185B2 (en) * 2011-08-19 2015-02-24 Pulson, Inc. System and method for reliably coordinating musculoskeletal and cardiovascular hemodynamics
TW201328660A (en) * 2012-01-06 2013-07-16 Advanced Mediwatch Co Ltd A real-time exercise coaching system
US11185241B2 (en) * 2014-03-05 2021-11-30 Whoop, Inc. Continuous heart rate monitoring and interpretation
WO2014063160A1 (en) * 2012-10-19 2014-04-24 Basis Science, Inc. Detection of emotional states
US20150088006A1 (en) 2013-09-20 2015-03-26 Simbionics Method for determining aerobic capacity
US20150265161A1 (en) * 2014-03-19 2015-09-24 Massachusetts Institute Of Technology Methods and Apparatus for Physiological Parameter Estimation
US9848823B2 (en) 2014-05-29 2017-12-26 Apple Inc. Context-aware heart rate estimation
JP6370209B2 (en) 2014-12-24 2018-08-08 日本光電工業株式会社 Biological information prediction apparatus, biological information prediction method, and program
WO2017011431A2 (en) * 2015-07-15 2017-01-19 Valencell, Inc. Methods of controlling biometric parameters via musical audio
US9517028B1 (en) * 2015-08-18 2016-12-13 Firstbeat Technologies Oy Method and system to determine anaerobic threshold of a person non-invasively from freely performed exercise and to provide feedback on training intensity
US20170143262A1 (en) * 2015-11-20 2017-05-25 Firstbeat Technologies Oy Systems, methods, computer program products, and apparatus for detecting exercise intervals, analyzing anaerobic exercise periods, and analyzing individual training effects
US11587665B2 (en) * 2015-12-28 2023-02-21 The University Of North Carolina At Chapel Hill Methods, systems, and non-transitory computer readable media for estimating maximum heart rate and maximal oxygen uptake from submaximal exercise intensities
BR112019010408A8 (en) * 2016-11-23 2023-03-21 Lifeq Global Ltd SYSTEM AND METHOD FOR BIOMETRIC IDENTIFICATION WHEN USING SLEEP PHYSIOLOGY
US20180353090A1 (en) * 2017-06-13 2018-12-13 Huami Inc. Adaptive Heart Rate Estimation
US10820810B2 (en) 2018-11-26 2020-11-03 Firstbeat Analytics, Oy Method and a system for determining the maximum heart rate of a user of in a freely performed physical exercise

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